Bayesian analysis with Python: a practical guide to probabilistic modeling
Learn the fundamentals of Bayesian modeling using state-of-the-art Python libraries, such as PyMC, ArviZ, Bambi, and more, guided by an experienced Bayesian modeler who contributes to these libraries Key Features Conduct Bayesian data analysis with step-by-step guidance Gain insight into a modern, p...
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Weitere beteiligte Personen: | , |
Format: | Elektronisch E-Book |
Sprache: | Englisch |
Veröffentlicht: |
Birmingham
Packt Publishing
[2024]
|
Ausgabe: | Third Edition. |
Schriftenreihe: | Expert insight
|
Schlagwörter: | |
Links: | https://learning.oreilly.com/library/view/-/9781805127161/?ar |
Zusammenfassung: | Learn the fundamentals of Bayesian modeling using state-of-the-art Python libraries, such as PyMC, ArviZ, Bambi, and more, guided by an experienced Bayesian modeler who contributes to these libraries Key Features Conduct Bayesian data analysis with step-by-step guidance Gain insight into a modern, practical, and computational approach to Bayesian statistical modeling Enhance your learning with best practices through sample problems and practice exercises Purchase of the print or Kindle book includes a free PDF eBook. Book DescriptionThe third edition of Bayesian Analysis with Python serves as an introduction to the main concepts of applied Bayesian modeling using PyMC, a state-of-the-art probabilistic programming library, and other libraries that support and facilitate modeling like ArviZ, for exploratory analysis of Bayesian models; Bambi, for flexible and easy hierarchical linear modeling; PreliZ, for prior elicitation; PyMC-BART, for flexible non-parametric regression; and Kulprit, for variable selection. In this updated edition, a brief and conceptual introduction to probability theory enhances your learning journey by introducing new topics like Bayesian additive regression trees (BART), featuring updated examples. Refined explanations, informed by feedback and experience from previous editions, underscore the book's emphasis on Bayesian statistics. You will explore various models, including hierarchical models, generalized linear models for regression and classification, mixture models, Gaussian processes, and BART, using synthetic and real datasets. By the end of this book, you will possess a functional understanding of probabilistic modeling, enabling you to design and implement Bayesian models for your data science challenges. You'll be well-prepared to delve into more advanced material or specialized statistical modeling if the need arises. What you will learn Build probabilistic models using PyMC and Bambi Analyze and interpret probabilistic models with ArviZ Acquire the skills to sanity-check models and modify them if necessary Build better models with prior and posterior predictive checks Learn the advantages and caveats of hierarchical models Compare models and choose between alternative ones Interpret results and apply your knowledge to real-world problems Explore common models from a unified probabilistic perspective Apply the Bayesian framework's flexibility for probabilistic thinking Who this book is for If you are a student, data scientist, researcher, or developer looking to get started with Bayesian data analysis and probabilistic programming, this book is for you. The book is introductory, so no previous statistical knowledge is required, although some experience in using Python and scientific libraries like NumPy is expected. |
Beschreibung: | Includes bibliographical references and index. - Online resource; title from PDF title page (EBSCO, viewed February 29, 2024) |
Umfang: | 1 Online-Ressource. |
ISBN: | 9781805125419 1805125419 9781805127161 |
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spelling | Martin, Osvaldo VerfasserIn aut Bayesian analysis with Python a practical guide to probabilistic modeling Osvaldo Martin ; foreword by Christopher Fonnesbeck, Thomas Wiecki Third Edition. Birmingham Packt Publishing [2024] ©2024 1 Online-Ressource. Text txt rdacontent Computermedien c rdamedia Online-Ressource cr rdacarrier Expert insight Includes bibliographical references and index. - Online resource; title from PDF title page (EBSCO, viewed February 29, 2024) Learn the fundamentals of Bayesian modeling using state-of-the-art Python libraries, such as PyMC, ArviZ, Bambi, and more, guided by an experienced Bayesian modeler who contributes to these libraries Key Features Conduct Bayesian data analysis with step-by-step guidance Gain insight into a modern, practical, and computational approach to Bayesian statistical modeling Enhance your learning with best practices through sample problems and practice exercises Purchase of the print or Kindle book includes a free PDF eBook. Book DescriptionThe third edition of Bayesian Analysis with Python serves as an introduction to the main concepts of applied Bayesian modeling using PyMC, a state-of-the-art probabilistic programming library, and other libraries that support and facilitate modeling like ArviZ, for exploratory analysis of Bayesian models; Bambi, for flexible and easy hierarchical linear modeling; PreliZ, for prior elicitation; PyMC-BART, for flexible non-parametric regression; and Kulprit, for variable selection. In this updated edition, a brief and conceptual introduction to probability theory enhances your learning journey by introducing new topics like Bayesian additive regression trees (BART), featuring updated examples. Refined explanations, informed by feedback and experience from previous editions, underscore the book's emphasis on Bayesian statistics. You will explore various models, including hierarchical models, generalized linear models for regression and classification, mixture models, Gaussian processes, and BART, using synthetic and real datasets. By the end of this book, you will possess a functional understanding of probabilistic modeling, enabling you to design and implement Bayesian models for your data science challenges. You'll be well-prepared to delve into more advanced material or specialized statistical modeling if the need arises. What you will learn Build probabilistic models using PyMC and Bambi Analyze and interpret probabilistic models with ArviZ Acquire the skills to sanity-check models and modify them if necessary Build better models with prior and posterior predictive checks Learn the advantages and caveats of hierarchical models Compare models and choose between alternative ones Interpret results and apply your knowledge to real-world problems Explore common models from a unified probabilistic perspective Apply the Bayesian framework's flexibility for probabilistic thinking Who this book is for If you are a student, data scientist, researcher, or developer looking to get started with Bayesian data analysis and probabilistic programming, this book is for you. The book is introductory, so no previous statistical knowledge is required, although some experience in using Python and scientific libraries like NumPy is expected. Python (Computer program language) Natural language processing (Computer science) Bayesian statistical decision theory Python (Langage de programmation) Traitement automatique des langues naturelles Théorie de la décision bayésienne Fonnesbeck, Christopher MitwirkendeR ctb Wiecki, Thomas MitwirkendeR ctb 9781805127161 Erscheint auch als Druck-Ausgabe 9781805127161 |
spellingShingle | Martin, Osvaldo Bayesian analysis with Python a practical guide to probabilistic modeling Python (Computer program language) Natural language processing (Computer science) Bayesian statistical decision theory Python (Langage de programmation) Traitement automatique des langues naturelles Théorie de la décision bayésienne |
title | Bayesian analysis with Python a practical guide to probabilistic modeling |
title_auth | Bayesian analysis with Python a practical guide to probabilistic modeling |
title_exact_search | Bayesian analysis with Python a practical guide to probabilistic modeling |
title_full | Bayesian analysis with Python a practical guide to probabilistic modeling Osvaldo Martin ; foreword by Christopher Fonnesbeck, Thomas Wiecki |
title_fullStr | Bayesian analysis with Python a practical guide to probabilistic modeling Osvaldo Martin ; foreword by Christopher Fonnesbeck, Thomas Wiecki |
title_full_unstemmed | Bayesian analysis with Python a practical guide to probabilistic modeling Osvaldo Martin ; foreword by Christopher Fonnesbeck, Thomas Wiecki |
title_short | Bayesian analysis with Python |
title_sort | bayesian analysis with python a practical guide to probabilistic modeling |
title_sub | a practical guide to probabilistic modeling |
topic | Python (Computer program language) Natural language processing (Computer science) Bayesian statistical decision theory Python (Langage de programmation) Traitement automatique des langues naturelles Théorie de la décision bayésienne |
topic_facet | Python (Computer program language) Natural language processing (Computer science) Bayesian statistical decision theory Python (Langage de programmation) Traitement automatique des langues naturelles Théorie de la décision bayésienne |
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